Stock Market Prediction Using Deep Reinforcement Learning

IF 3.8 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Alamir Labib Awad, Saleh Mesbah Elkaffas, Mohammed Waleed Fakhr
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Abstract

Stock value prediction and trading, a captivating and complex research domain, continues to draw heightened attention. Ensuring profitable returns in stock market investments demands precise and timely decision-making. The evolution of technology has introduced advanced predictive algorithms, reshaping investment strategies. Essential to this transformation is the profound reliance on historical data analysis, driving the automation of decisions, particularly in individual stock contexts. Recent strides in deep reinforcement learning algorithms have emerged as a focal point for researchers, offering promising avenues in stock market predictions. In contrast to prevailing models rooted in artificial neural network (ANN) and long short-term memory (LSTM) algorithms, this study introduces a pioneering approach. By integrating ANN, LSTM, and natural language processing (NLP) techniques with the deep Q network (DQN), this research crafts a novel architecture tailored specifically for stock market prediction. At its core, this innovative framework harnesses the wealth of historical stock data, with a keen focus on gold stocks. Augmented by the insightful analysis of social media data, including platforms such as S&P, Yahoo, NASDAQ, and various gold market-related channels, this study gains depth and comprehensiveness. The predictive prowess of the developed model is exemplified in its ability to forecast the opening stock value for the subsequent day, a feat validated across exhaustive datasets. Through rigorous comparative analysis against benchmark algorithms, the research spotlights the unparalleled accuracy and efficacy of the proposed combined algorithmic architecture. This study not only presents a compelling demonstration of predictive analytics but also engages in critical analysis, illuminating the intricate dynamics of the stock market. Ultimately, this research contributes valuable insights and sets new horizons in the realm of stock market predictions.
基于深度强化学习的股票市场预测
股票价值预测与交易是一个引人入胜而又复杂的研究领域,一直备受关注。确保股票市场投资的盈利回报需要精确和及时的决策。技术的发展引入了先进的预测算法,重塑了投资策略。这种转变的关键是对历史数据分析的深刻依赖,推动了决策的自动化,特别是在个股背景下。深度强化学习算法的最新进展已经成为研究人员关注的焦点,为股市预测提供了有希望的途径。与基于人工神经网络(ANN)和长短期记忆(LSTM)算法的主流模型相比,本研究引入了一种开创性的方法。通过将人工神经网络、LSTM和自然语言处理(NLP)技术与深度Q网络(DQN)相结合,本研究构建了一个专门为股市预测量身定制的新架构。这一创新框架的核心是利用历史股票数据的财富,重点关注黄金股。通过对标普、雅虎、纳斯达克等社交媒体平台以及各种黄金市场相关渠道的深入分析,本研究具有深度和全面性。开发的模型的预测能力体现在其预测第二天开盘股票价值的能力上,这一壮举在详尽的数据集上得到了验证。通过与基准算法的严格比较分析,研究表明所提出的组合算法架构具有无与伦比的准确性和有效性。本研究不仅展示了令人信服的预测分析,而且还进行了批判性分析,阐明了股票市场的复杂动态。最终,这项研究为股票市场预测领域提供了宝贵的见解,并开辟了新的视野。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Applied System Innovation
Applied System Innovation Mathematics-Applied Mathematics
CiteScore
7.90
自引率
5.30%
发文量
102
审稿时长
11 weeks
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